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Mechanical failure acoustic diagnosis using frequency domain semi-blind extraction method

机译:机械故障声学诊断的频域半盲提取方法

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It’s usually very difficult to extract fault features from the acoustic signals directly, since the complexity of the mechanical structure and the serious background interference in industry testing site. In order to deal with these kinds of monitoring problems, a mechanical failure acoustic diagnosis method based on reference signal frequency domain semi-blind extraction is proposed. In this method, dynamic particle swarm algorithm is used to construct improved multi-scale morphological filters which applicable to mechanical failure in order to weaken the background noises; thus reference signal unit semi-blind extraction algorithm is applied to do complex components blind separation band by band, coupled improved KL-distance of complex independent components are employed as distance measure to resolve the permutation; finally the estimated signal could be extracted and analyzed by envelope spectrum method. Comparing to the timedomain blind deconvolution algorithm based on fuzzy clustering, it has several advantages such as more effectively and more accurately. Results from acoustics rolling bearing fault diagnosis experiment validate the feasibility and effectiveness of proposed method.
机译:由于机械结构的复杂性以及工业测试现场的严重背景干扰,通常很难直接从声音信号中提取故障特征。针对此类监测问题,提出了一种基于参考信号频域半盲提取的机械故障声学诊断方法。该方法采用动态粒子群算法构造改进的多尺度形态学滤波器,适用于机械故障,以减弱背景噪声。因此,采用参考信号单元半盲提取算法,将复杂分量逐带盲分离,结合复杂独立分量的改进的KL距离作为距离度量来解决置换。最后通过包络谱法提取估计信号并进行分析。与基于模糊聚类的时域盲反卷积算法相比,具有更有效,更准确的优点。声学滚动轴承故障诊断实验结果验证了该方法的可行性和有效性。

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